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Main Authors: Seo, Youngkyung, Heo, Yoonseok, Koh, Jun-Seok, Chang, Du-Seong
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.06537
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author Seo, Youngkyung
Heo, Yoonseok
Koh, Jun-Seok
Chang, Du-Seong
author_facet Seo, Youngkyung
Heo, Yoonseok
Koh, Jun-Seok
Chang, Du-Seong
contents In multi-session dialog system, it is essential to continuously update the memory as the session progresses. Simply accumulating memory can make it difficult to focus on the content of the conversation for inference due to the limited input sentence size. Therefore, efficient and accurate conversation model that is capable of managing memory to reflect the conversation history continuously is necessary. This paper presents a conversation model that efficiently manages memory as sessions progress and incorporates this into the model to reflect the conversation history accurately with 3 methodologies: SFT, DPO and DPO with SFT model. Our model using DPO algorithm shows an improvement about 0.0591 of BERTScore in memory accuracy, and the rate of responses reflecting the memory increased as well. Also, response generation performance enhanced about 4.292 in fluency, 3.935 in coherence, and 2.896 in consistency. This paper describes a training method that yields better performance than models with more than twice the parameter size, even when the model size is smaller. Thus, our model demonstrates efficiency not only in terms of accuracy but also in resource utilization.
format Preprint
id arxiv_https___arxiv_org_abs_2407_06537
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Efficient and Accurate Memorable Conversation Model using DPO based on sLLM
Seo, Youngkyung
Heo, Yoonseok
Koh, Jun-Seok
Chang, Du-Seong
Computation and Language
Artificial Intelligence
In multi-session dialog system, it is essential to continuously update the memory as the session progresses. Simply accumulating memory can make it difficult to focus on the content of the conversation for inference due to the limited input sentence size. Therefore, efficient and accurate conversation model that is capable of managing memory to reflect the conversation history continuously is necessary. This paper presents a conversation model that efficiently manages memory as sessions progress and incorporates this into the model to reflect the conversation history accurately with 3 methodologies: SFT, DPO and DPO with SFT model. Our model using DPO algorithm shows an improvement about 0.0591 of BERTScore in memory accuracy, and the rate of responses reflecting the memory increased as well. Also, response generation performance enhanced about 4.292 in fluency, 3.935 in coherence, and 2.896 in consistency. This paper describes a training method that yields better performance than models with more than twice the parameter size, even when the model size is smaller. Thus, our model demonstrates efficiency not only in terms of accuracy but also in resource utilization.
title Efficient and Accurate Memorable Conversation Model using DPO based on sLLM
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2407.06537